Rapid Plant Development Modelling System for Predictive Agriculture Based on Artificial Intelligence

V. Lešić, Hrvoje Novak, Marko Ratkovic, M. Zovko, D. Lemić, S. Skendžić, Jelena Tabak, Marsela Polic, M. Orsag
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引用次数: 4

Abstract

Actual and upcoming climate changes will evidently have the largest impact on agriculture crops cultivation in terms of reduced harvest, increased costs, and necessary deviation from the traditional farming. The aggravating factor for the successful applications of precision and predictive agriculture is the lack of big data, due to slow, year-round cycles of crops, as a prerequisite for further analysis and modelling. The goal of the system we propose is to enable rapid collection of data with respect to various climate conditions, which are artificially created and permuted in the encapsulated design, and correlated with plant development identifiers. The design is equipped with a large number of sensors and connected to the central database in a computer cloud. Such accumulated data is exploited to develop mathematical models of wheat in different growth stages by applying the concepts of artificial intelligence and utilize them for prediction of crop development and harvest. The paper presents a work in progress where the developed models will be publicly and interactively used through a portal for prediction of plant development in real and hypothetical climate conditions, with accumulated and archived feedback from farmers as additional data for tuning of the developed models.
基于人工智能的预测农业植物快速发育建模系统
目前和即将发生的气候变化对农业作物种植的影响最大,主要表现在收成减少、成本增加以及对传统耕作方式的必要偏离。阻碍精准农业和预测农业成功应用的因素是缺乏大数据,因为作物的全年周期缓慢,而大数据是进一步分析和建模的先决条件。我们提出的系统的目标是能够快速收集有关各种气候条件的数据,这些数据是在封装设计中人工创建和排列的,并与植物发育标识符相关。该设计配备了大量传感器,并与计算机云中的中央数据库相连。利用这些积累的数据,应用人工智能的概念,建立小麦不同生长阶段的数学模型,并利用它们来预测作物的发育和收获。本文介绍了一项正在进行的工作,其中开发的模型将通过门户网站公开和交互式地用于预测真实和假设气候条件下的植物发育,并将农民积累和存档的反馈作为调整开发模型的附加数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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